基于击键动力学的深度神经网络应用于用户识别:从原始数据中学习

Marco Aurélio da Silva Cruz, R. Goldschmidt
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引用次数: 0

摘要

一些研究已经研究了如何使用机器学习算法来识别基于击键动态的用户。所有这些研究都需要特征工程(FE),也就是说,专家选择应该考虑学习哪些属性的过程。然而,该过程容易出现原始信息丢失或属性选择不当等问题。因此,这项工作的目的是证明一个假设,即应用于击键动力学原始(原始)数据的用户识别算法比依赖于FE的算法表现得更好。因此,本文提出了一种深度神经网络,命名为DRK。所提出的网络包含学习足够数据表示的层,以基于击键动力学原始数据执行用户识别,避免FE。实验将DRK与其他四个使用FE的深度神经网络在四个数据集中进行了比较,这些数据集中有280个用户。所提出的网络在所有数据集中都取得了更好的结果,有力地证明了所述假设实际上是有效的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep Neural Networks Applied to User Recognition Based on Keystroke Dynamics: Learning from Raw Data
Several studies have investigated how to use Machine Learning algorithms to recognize users based on keystroke dynamic. All those studies required Feature Engineering (FE), i.e., a process in which specialists choose what attributes should be considered for learning. However, this process is susceptible to problems such as original information loss or inappropriate attribute choices. Thus, the objective of this work is to demonstrate the hypothesis that user recognition algorithms applied to keystroke dynamics raw (original) data can perform better than the ones that depend on FE. Therefore, this work proposes a deep neural network named DRK. The proposed network contains layers that learn adequate data representations to perform user recognition based on keystroke dynamics raw data, avoiding FE. Experiments compared DRK with four other deep neural networks that use FE in four datasets with 280 users. The proposed network achieved better results in all datasets, showing strong evidence that the stated hypothesis is, in fact, valid.
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